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Issue No.02 - March-April (2013 vol.28)
pp: 96-99
Daniel E. O'Leary , University of Southern California
ABSTRACT
AI has been used in several different ways to facilitate capturing and structuring big data, and AI has been used to analyze big data for key insights. Some of the basic concerns and uses are examined here, while future articles will present case studies that analyze emerging issues and approaches integrating AI and big data.
INDEX TERMS
Artificial intelligence, Information management, Data handling, Data storage systems, Internet, Machine learning algorithms, big data, AI, big data, artificial intelligence, intelligent systems, parallelization, visualization
CITATION
Daniel E. O'Leary, "Artificial Intelligence and Big Data", IEEE Intelligent Systems, vol.28, no. 2, pp. 96-99, March-April 2013, doi:10.1109/MIS.2013.39
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